{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "id": "b470389d-a897-416e-9601-aeacb39cd694",
   "metadata": {},
   "outputs": [],
   "source": [
    "# Copyright (c) Meta Platforms, Inc. and affiliates."
   ]
  },
  {
   "cell_type": "markdown",
   "id": "eb5c8577-7dff-41b1-9b04-2dca12940e02",
   "metadata": {},
   "source": [
    "# Semantic Segmentation <a target=\"_blank\" href=\"https://colab.research.google.com/github/facebookresearch/dinov2/blob/main/notebooks/semantic_segmentation.ipynb\"><img src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/></a>"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "id": "febdf412-5ad0-4bbc-9530-754f92dcc491",
   "metadata": {},
   "outputs": [],
   "source": [
    "import sys\n",
    "\n",
    "INSTALL = False # Switch this to install dependencies\n",
    "if INSTALL: # Try installing package with extras\n",
    "    REPO_URL = \"https://github.com/facebookresearch/dinov2\"\n",
    "    !{sys.executable} -m pip install -e {REPO_URL}'[extras]' --extra-index-url https://download.pytorch.org/whl/cu117  --extra-index-url https://pypi.nvidia.com\n",
    "else:\n",
    "    REPO_PATH = \"<FIXME>\" # Specify a local path to the repository (or use installed package instead)\n",
    "    sys.path.append(REPO_PATH)"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "efdf378b-0591-4879-9db6-6a4ab582d49f",
   "metadata": {},
   "source": [
    "## Utilities"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "id": "90223c04-e7da-4738-bb16-d4f7025aa3eb",
   "metadata": {},
   "outputs": [],
   "source": [
    "import math\n",
    "import itertools\n",
    "from functools import partial\n",
    "\n",
    "import torch\n",
    "import torch.nn.functional as F\n",
    "from mmseg.apis import init_segmentor, inference_segmentor\n",
    "\n",
    "import dinov2.eval.segmentation.models\n",
    "\n",
    "\n",
    "class CenterPadding(torch.nn.Module):\n",
    "    def __init__(self, multiple):\n",
    "        super().__init__()\n",
    "        self.multiple = multiple\n",
    "\n",
    "    def _get_pad(self, size):\n",
    "        new_size = math.ceil(size / self.multiple) * self.multiple\n",
    "        pad_size = new_size - size\n",
    "        pad_size_left = pad_size // 2\n",
    "        pad_size_right = pad_size - pad_size_left\n",
    "        return pad_size_left, pad_size_right\n",
    "\n",
    "    @torch.inference_mode()\n",
    "    def forward(self, x):\n",
    "        pads = list(itertools.chain.from_iterable(self._get_pad(m) for m in x.shape[:1:-1]))\n",
    "        output = F.pad(x, pads)\n",
    "        return output\n",
    "\n",
    "\n",
    "def create_segmenter(cfg, backbone_model):\n",
    "    model = init_segmentor(cfg)\n",
    "    model.backbone.forward = partial(\n",
    "        backbone_model.get_intermediate_layers,\n",
    "        n=cfg.model.backbone.out_indices,\n",
    "        reshape=True,\n",
    "    )\n",
    "    if hasattr(backbone_model, \"patch_size\"):\n",
    "        model.backbone.register_forward_pre_hook(lambda _, x: CenterPadding(backbone_model.patch_size)(x[0]))\n",
    "    model.init_weights()\n",
    "    return model"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "a5724efc-b2b8-46ed-94e1-7fee59a39ed9",
   "metadata": {},
   "source": [
    "## Load pretrained backbone"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "id": "2d51b932-1157-45ce-997f-572ad417a12f",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Using cache found in /private/home/plabatut/.cache/torch/hub/facebookresearch_dinov2_main\n",
      "/private/home/plabatut/github/patricklabatut/dinov2/dinov2/layers/swiglu_ffn.py:43: UserWarning: xFormers is available (SwiGLU)\n",
      "  warnings.warn(\"xFormers is available (SwiGLU)\")\n",
      "/private/home/plabatut/github/patricklabatut/dinov2/dinov2/layers/attention.py:27: UserWarning: xFormers is available (Attention)\n",
      "  warnings.warn(\"xFormers is available (Attention)\")\n",
      "/private/home/plabatut/github/patricklabatut/dinov2/dinov2/layers/block.py:33: UserWarning: xFormers is available (Block)\n",
      "  warnings.warn(\"xFormers is available (Block)\")\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "DinoVisionTransformer(\n",
       "  (patch_embed): PatchEmbed(\n",
       "    (proj): Conv2d(3, 384, kernel_size=(14, 14), stride=(14, 14))\n",
       "    (norm): Identity()\n",
       "  )\n",
       "  (blocks): ModuleList(\n",
       "    (0-11): 12 x NestedTensorBlock(\n",
       "      (norm1): LayerNorm((384,), eps=1e-06, elementwise_affine=True)\n",
       "      (attn): MemEffAttention(\n",
       "        (qkv): Linear(in_features=384, out_features=1152, bias=True)\n",
       "        (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "        (proj): Linear(in_features=384, out_features=384, bias=True)\n",
       "        (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "      )\n",
       "      (ls1): LayerScale()\n",
       "      (drop_path1): Identity()\n",
       "      (norm2): LayerNorm((384,), eps=1e-06, elementwise_affine=True)\n",
       "      (mlp): Mlp(\n",
       "        (fc1): Linear(in_features=384, out_features=1536, bias=True)\n",
       "        (act): GELU(approximate='none')\n",
       "        (fc2): Linear(in_features=1536, out_features=384, bias=True)\n",
       "        (drop): Dropout(p=0.0, inplace=False)\n",
       "      )\n",
       "      (ls2): LayerScale()\n",
       "      (drop_path2): Identity()\n",
       "    )\n",
       "  )\n",
       "  (norm): LayerNorm((384,), eps=1e-06, elementwise_affine=True)\n",
       "  (head): Identity()\n",
       ")"
      ]
     },
     "execution_count": 4,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "BACKBONE_SIZE = \"small\" # in (\"small\", \"base\", \"large\" or \"giant\")\n",
    "\n",
    "\n",
    "backbone_archs = {\n",
    "    \"small\": \"vits14\",\n",
    "    \"base\": \"vitb14\",\n",
    "    \"large\": \"vitl14\",\n",
    "    \"giant\": \"vitg14\",\n",
    "}\n",
    "backbone_arch = backbone_archs[BACKBONE_SIZE]\n",
    "backbone_name = f\"dinov2_{backbone_arch}\"\n",
    "\n",
    "backbone_model = torch.hub.load(repo_or_dir=\"facebookresearch/dinov2\", model=backbone_name)\n",
    "backbone_model.eval()\n",
    "backbone_model.cuda()"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "c1c90501-d6ef-436e-b1a1-72e63b0534e3",
   "metadata": {},
   "source": [
    "## Load pretrained segmentation head"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "id": "d0bf0b7f-ad98-4cfb-8120-f076df8f8933",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/private/home/plabatut/.conda/envs/dinov2-extras-conda/lib/python3.9/site-packages/mmseg/models/losses/cross_entropy_loss.py:235: UserWarning: Default ``avg_non_ignore`` is False, if you would like to ignore the certain label and average loss over non-ignore labels, which is the same with PyTorch official cross_entropy, set ``avg_non_ignore=True``.\n",
      "  warnings.warn(\n",
      "2023-08-31 06:29:03,743 - mmcv - INFO - initialize BNHead with init_cfg {'type': 'Normal', 'std': 0.01, 'override': {'name': 'conv_seg'}}\n",
      "2023-08-31 06:29:03,744 - mmcv - INFO - \n",
      "decode_head.conv_seg.weight - torch.Size([21, 1536, 1, 1]): \n",
      "NormalInit: mean=0, std=0.01, bias=0 \n",
      " \n",
      "2023-08-31 06:29:03,745 - mmcv - INFO - \n",
      "decode_head.conv_seg.bias - torch.Size([21]): \n",
      "NormalInit: mean=0, std=0.01, bias=0 \n",
      " \n",
      "2023-08-31 06:29:03,745 - mmcv - INFO - \n",
      "decode_head.bn.weight - torch.Size([1536]): \n",
      "The value is the same before and after calling `init_weights` of EncoderDecoder  \n",
      " \n",
      "2023-08-31 06:29:03,746 - mmcv - INFO - \n",
      "decode_head.bn.bias - torch.Size([1536]): \n",
      "The value is the same before and after calling `init_weights` of EncoderDecoder  \n",
      " \n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "scales: [1.0, 1.32, 1.73]\n",
      "load checkpoint from http path: https://dl.fbaipublicfiles.com/dinov2/dinov2_vits14/dinov2_vits14_voc2012_ms_head.pth\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "EncoderDecoder(\n",
       "  (backbone): DinoVisionTransformer()\n",
       "  (decode_head): BNHead(\n",
       "    input_transform=resize_concat, ignore_index=255, align_corners=False\n",
       "    (loss_decode): CrossEntropyLoss(avg_non_ignore=False)\n",
       "    (conv_seg): Conv2d(1536, 21, kernel_size=(1, 1), stride=(1, 1))\n",
       "    (bn): SyncBatchNorm(1536, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "  )\n",
       "  init_cfg={'type': 'Normal', 'std': 0.01, 'override': {'name': 'conv_seg'}}\n",
       ")"
      ]
     },
     "execution_count": 5,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "import urllib\n",
    "\n",
    "import mmcv\n",
    "from mmcv.runner import load_checkpoint\n",
    "\n",
    "\n",
    "def load_config_from_url(url: str) -> str:\n",
    "    with urllib.request.urlopen(url) as f:\n",
    "        return f.read().decode()\n",
    "\n",
    "\n",
    "HEAD_SCALE_COUNT = 3 # more scales: slower but better results, in (1,2,3,4,5)\n",
    "HEAD_DATASET = \"voc2012\" # in (\"ade20k\", \"voc2012\")\n",
    "HEAD_TYPE = \"ms\" # in (\"ms, \"linear\")\n",
    "\n",
    "\n",
    "DINOV2_BASE_URL = \"https://dl.fbaipublicfiles.com/dinov2\"\n",
    "head_config_url = f\"{DINOV2_BASE_URL}/{backbone_name}/{backbone_name}_{HEAD_DATASET}_{HEAD_TYPE}_config.py\"\n",
    "head_checkpoint_url = f\"{DINOV2_BASE_URL}/{backbone_name}/{backbone_name}_{HEAD_DATASET}_{HEAD_TYPE}_head.pth\"\n",
    "\n",
    "cfg_str = load_config_from_url(head_config_url)\n",
    "cfg = mmcv.Config.fromstring(cfg_str, file_format=\".py\")\n",
    "if HEAD_TYPE == \"ms\":\n",
    "    cfg.data.test.pipeline[1][\"img_ratios\"] = cfg.data.test.pipeline[1][\"img_ratios\"][:HEAD_SCALE_COUNT]\n",
    "    print(\"scales:\", cfg.data.test.pipeline[1][\"img_ratios\"])\n",
    "\n",
    "model = create_segmenter(cfg, backbone_model=backbone_model)\n",
    "load_checkpoint(model, head_checkpoint_url, map_location=\"cpu\")\n",
    "model.cuda()\n",
    "model.eval()"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "2dc1b106-d28c-41cc-9ddd-f558d66a4715",
   "metadata": {},
   "source": [
    "## Load sample image"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "id": "44511634-8243-4662-a512-4531014adb32",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<PIL.Image.Image image mode=RGB size=640x480>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "import urllib\n",
    "\n",
    "from PIL import Image\n",
    "\n",
    "\n",
    "def load_image_from_url(url: str) -> Image:\n",
    "    with urllib.request.urlopen(url) as f:\n",
    "        return Image.open(f).convert(\"RGB\")\n",
    "\n",
    "\n",
    "EXAMPLE_IMAGE_URL = \"https://dl.fbaipublicfiles.com/dinov2/images/example.jpg\"\n",
    "\n",
    "\n",
    "image = load_image_from_url(EXAMPLE_IMAGE_URL)\n",
    "display(image)"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "7e3240cb-54d0-438d-99e8-8c1af534f830",
   "metadata": {},
   "source": [
    "## Semantic segmentation on sample image"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "id": "49226d5b-83fc-4cfb-ba06-407bb2c0d96f",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<PIL.Image.Image image mode=RGB size=640x480>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "import numpy as np\n",
    "\n",
    "import dinov2.eval.segmentation.utils.colormaps as colormaps\n",
    "\n",
    "\n",
    "DATASET_COLORMAPS = {\n",
    "    \"ade20k\": colormaps.ADE20K_COLORMAP,\n",
    "    \"voc2012\": colormaps.VOC2012_COLORMAP,\n",
    "}\n",
    "\n",
    "\n",
    "def render_segmentation(segmentation_logits, dataset):\n",
    "    colormap = DATASET_COLORMAPS[dataset]\n",
    "    colormap_array = np.array(colormap, dtype=np.uint8)\n",
    "    segmentation_values = colormap_array[segmentation_logits + 1]\n",
    "    return Image.fromarray(segmentation_values)\n",
    "\n",
    "\n",
    "array = np.array(image)[:, :, ::-1] # BGR\n",
    "segmentation_logits = inference_segmentor(model, array)[0]\n",
    "segmented_image = render_segmentation(segmentation_logits, HEAD_DATASET)\n",
    "display(segmented_image)"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "de40012e-a01e-4e73-bb71-3048f16d41c8",
   "metadata": {},
   "source": [
    "## Load pretrained segmentation model (Mask2Former)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "id": "ff2cbbbe-c53c-4e5b-977f-c2a7d93f4b8c",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/private/home/plabatut/github/patricklabatut/dinov2/dinov2/eval/segmentation_m2f/models/losses/cross_entropy_loss.py:222: UserWarning: Default ``avg_non_ignore`` is False, if you would like to ignore the certain label and average loss over non-ignore labels, which is the same with PyTorch official cross_entropy, set ``avg_non_ignore=True``.\n",
      "  warnings.warn(\n",
      "/private/home/plabatut/.conda/envs/dinov2-extras-conda/lib/python3.9/site-packages/mmcv/ops/multi_scale_deform_attn.py:209: UserWarning: You'd better set embed_dims in MultiScaleDeformAttention to make the dimension of each attention head a power of 2 which is more efficient in our CUDA implementation.\n",
      "  warnings.warn(\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "load checkpoint from http path: https://dl.fbaipublicfiles.com/dinov2/dinov2_vitg14/dinov2_vitg14_ade20k_m2f.pth\n"
     ]
    },
    {
     "data": {
      "text/plain": [
       "EncoderDecoderMask2Former(\n",
       "  (backbone): ViTAdapter(\n",
       "    (patch_embed): PatchEmbed(\n",
       "      (proj): Conv2d(3, 1536, kernel_size=(14, 14), stride=(14, 14))\n",
       "      (norm): Identity()\n",
       "    )\n",
       "    (pos_drop): Dropout(p=0.0, inplace=False)\n",
       "    (blocks): Sequential(\n",
       "      (0): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): Identity()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (1): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (2): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (3): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (4): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (5): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (6): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (7): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (8): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (9): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (10): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (11): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (12): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (13): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (14): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (15): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (16): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (17): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (18): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (19): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (20): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (21): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (22): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (23): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (24): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (25): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (26): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (27): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (28): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (29): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (30): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (31): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (32): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (33): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (34): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (35): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (36): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (37): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (38): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "      (39): Block(\n",
       "        (norm1): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (attn): Attention(\n",
       "          (qkv): Linear(in_features=1536, out_features=4608, bias=True)\n",
       "          (attn_drop): Dropout(p=0.0, inplace=False)\n",
       "          (proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "          (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "        )\n",
       "        (drop_path): DropPath()\n",
       "        (norm2): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "        (mlp): SwiGLUFFN(\n",
       "          (w1): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w2): Linear(in_features=1536, out_features=4096, bias=True)\n",
       "          (w3): Linear(in_features=4096, out_features=1536, bias=True)\n",
       "        )\n",
       "      )\n",
       "    )\n",
       "    (norm_pre): Identity()\n",
       "    (spm): SpatialPriorModule(\n",
       "      (stem): Sequential(\n",
       "        (0): Conv2d(3, 64, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False)\n",
       "        (1): SyncBatchNorm(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "        (2): ReLU(inplace=True)\n",
       "        (3): Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False)\n",
       "        (4): SyncBatchNorm(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "        (5): ReLU(inplace=True)\n",
       "        (6): Conv2d(64, 64, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False)\n",
       "        (7): SyncBatchNorm(64, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "        (8): ReLU(inplace=True)\n",
       "        (9): MaxPool2d(kernel_size=3, stride=2, padding=1, dilation=1, ceil_mode=False)\n",
       "      )\n",
       "      (conv2): Sequential(\n",
       "        (0): Conv2d(64, 128, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False)\n",
       "        (1): SyncBatchNorm(128, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "        (2): ReLU(inplace=True)\n",
       "      )\n",
       "      (conv3): Sequential(\n",
       "        (0): Conv2d(128, 256, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False)\n",
       "        (1): SyncBatchNorm(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "        (2): ReLU(inplace=True)\n",
       "      )\n",
       "      (conv4): Sequential(\n",
       "        (0): Conv2d(256, 256, kernel_size=(3, 3), stride=(2, 2), padding=(1, 1), bias=False)\n",
       "        (1): SyncBatchNorm(256, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "        (2): ReLU(inplace=True)\n",
       "      )\n",
       "      (fc1): Conv2d(64, 1536, kernel_size=(1, 1), stride=(1, 1))\n",
       "      (fc2): Conv2d(128, 1536, kernel_size=(1, 1), stride=(1, 1))\n",
       "      (fc3): Conv2d(256, 1536, kernel_size=(1, 1), stride=(1, 1))\n",
       "      (fc4): Conv2d(256, 1536, kernel_size=(1, 1), stride=(1, 1))\n",
       "    )\n",
       "    (interactions): Sequential(\n",
       "      (0): InteractionBlockWithCls(\n",
       "        (injector): Injector(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=576, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=288, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "        )\n",
       "        (extractor): Extractor(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=192, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=96, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "          (ffn): ConvFFN(\n",
       "            (fc1): Linear(in_features=1536, out_features=384, bias=True)\n",
       "            (dwconv): DWConv(\n",
       "              (dwconv): Conv2d(384, 384, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), groups=384)\n",
       "            )\n",
       "            (act): GELU(approximate='none')\n",
       "            (fc2): Linear(in_features=384, out_features=1536, bias=True)\n",
       "            (drop): Dropout(p=0.0, inplace=False)\n",
       "          )\n",
       "          (ffn_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (drop_path): DropPath()\n",
       "        )\n",
       "      )\n",
       "      (1): InteractionBlockWithCls(\n",
       "        (injector): Injector(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=576, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=288, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "        )\n",
       "        (extractor): Extractor(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=192, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=96, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "          (ffn): ConvFFN(\n",
       "            (fc1): Linear(in_features=1536, out_features=384, bias=True)\n",
       "            (dwconv): DWConv(\n",
       "              (dwconv): Conv2d(384, 384, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), groups=384)\n",
       "            )\n",
       "            (act): GELU(approximate='none')\n",
       "            (fc2): Linear(in_features=384, out_features=1536, bias=True)\n",
       "            (drop): Dropout(p=0.0, inplace=False)\n",
       "          )\n",
       "          (ffn_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (drop_path): DropPath()\n",
       "        )\n",
       "      )\n",
       "      (2): InteractionBlockWithCls(\n",
       "        (injector): Injector(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=576, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=288, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "        )\n",
       "        (extractor): Extractor(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=192, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=96, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "          (ffn): ConvFFN(\n",
       "            (fc1): Linear(in_features=1536, out_features=384, bias=True)\n",
       "            (dwconv): DWConv(\n",
       "              (dwconv): Conv2d(384, 384, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), groups=384)\n",
       "            )\n",
       "            (act): GELU(approximate='none')\n",
       "            (fc2): Linear(in_features=384, out_features=1536, bias=True)\n",
       "            (drop): Dropout(p=0.0, inplace=False)\n",
       "          )\n",
       "          (ffn_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (drop_path): DropPath()\n",
       "        )\n",
       "      )\n",
       "      (3): InteractionBlockWithCls(\n",
       "        (injector): Injector(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=576, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=288, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "        )\n",
       "        (extractor): Extractor(\n",
       "          (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (attn): MSDeformAttn(\n",
       "            (sampling_offsets): Linear(in_features=1536, out_features=192, bias=True)\n",
       "            (attention_weights): Linear(in_features=1536, out_features=96, bias=True)\n",
       "            (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "            (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "          )\n",
       "          (ffn): ConvFFN(\n",
       "            (fc1): Linear(in_features=1536, out_features=384, bias=True)\n",
       "            (dwconv): DWConv(\n",
       "              (dwconv): Conv2d(384, 384, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), groups=384)\n",
       "            )\n",
       "            (act): GELU(approximate='none')\n",
       "            (fc2): Linear(in_features=384, out_features=1536, bias=True)\n",
       "            (drop): Dropout(p=0.0, inplace=False)\n",
       "          )\n",
       "          (ffn_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "          (drop_path): DropPath()\n",
       "        )\n",
       "        (extra_extractors): Sequential(\n",
       "          (0): Extractor(\n",
       "            (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "            (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "            (attn): MSDeformAttn(\n",
       "              (sampling_offsets): Linear(in_features=1536, out_features=192, bias=True)\n",
       "              (attention_weights): Linear(in_features=1536, out_features=96, bias=True)\n",
       "              (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "              (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "            )\n",
       "            (ffn): ConvFFN(\n",
       "              (fc1): Linear(in_features=1536, out_features=384, bias=True)\n",
       "              (dwconv): DWConv(\n",
       "                (dwconv): Conv2d(384, 384, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), groups=384)\n",
       "              )\n",
       "              (act): GELU(approximate='none')\n",
       "              (fc2): Linear(in_features=384, out_features=1536, bias=True)\n",
       "              (drop): Dropout(p=0.0, inplace=False)\n",
       "            )\n",
       "            (ffn_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "            (drop_path): DropPath()\n",
       "          )\n",
       "          (1): Extractor(\n",
       "            (query_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "            (feat_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "            (attn): MSDeformAttn(\n",
       "              (sampling_offsets): Linear(in_features=1536, out_features=192, bias=True)\n",
       "              (attention_weights): Linear(in_features=1536, out_features=96, bias=True)\n",
       "              (value_proj): Linear(in_features=1536, out_features=768, bias=True)\n",
       "              (output_proj): Linear(in_features=768, out_features=1536, bias=True)\n",
       "            )\n",
       "            (ffn): ConvFFN(\n",
       "              (fc1): Linear(in_features=1536, out_features=384, bias=True)\n",
       "              (dwconv): DWConv(\n",
       "                (dwconv): Conv2d(384, 384, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), groups=384)\n",
       "              )\n",
       "              (act): GELU(approximate='none')\n",
       "              (fc2): Linear(in_features=384, out_features=1536, bias=True)\n",
       "              (drop): Dropout(p=0.0, inplace=False)\n",
       "            )\n",
       "            (ffn_norm): LayerNorm((1536,), eps=1e-06, elementwise_affine=True)\n",
       "            (drop_path): DropPath()\n",
       "          )\n",
       "        )\n",
       "      )\n",
       "    )\n",
       "    (up): ConvTranspose2d(1536, 1536, kernel_size=(2, 2), stride=(2, 2))\n",
       "    (norm1): SyncBatchNorm(1536, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "    (norm2): SyncBatchNorm(1536, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "    (norm3): SyncBatchNorm(1536, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "    (norm4): SyncBatchNorm(1536, eps=1e-05, momentum=0.1, affine=True, track_running_stats=True)\n",
       "  )\n",
       "  (decode_head): Mask2FormerHead(\n",
       "    input_transform=multiple_select, ignore_index=255, align_corners=False\n",
       "    (loss_decode): CrossEntropyLoss(avg_non_ignore=False)\n",
       "    (conv_seg): None\n",
       "    (dropout): Dropout2d(p=0.1, inplace=False)\n",
       "    (pixel_decoder): MSDeformAttnPixelDecoder(\n",
       "      (input_convs): ModuleList(\n",
       "        (0-2): 3 x ConvModule(\n",
       "          (conv): Conv2d(1536, 1536, kernel_size=(1, 1), stride=(1, 1))\n",
       "          (gn): GroupNorm(32, 1536, eps=1e-05, affine=True)\n",
       "        )\n",
       "      )\n",
       "      (encoder): DetrTransformerEncoder(\n",
       "        (layers): ModuleList(\n",
       "          (0-5): 6 x BaseTransformerLayer(\n",
       "            (attentions): ModuleList(\n",
       "              (0): MultiScaleDeformableAttention(\n",
       "                (dropout): Dropout(p=0.0, inplace=False)\n",
       "                (sampling_offsets): Linear(in_features=1536, out_features=768, bias=True)\n",
       "                (attention_weights): Linear(in_features=1536, out_features=384, bias=True)\n",
       "                (value_proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "                (output_proj): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "              )\n",
       "            )\n",
       "            (ffns): ModuleList(\n",
       "              (0): FFN(\n",
       "                (activate): ReLU(inplace=True)\n",
       "                (layers): Sequential(\n",
       "                  (0): Sequential(\n",
       "                    (0): Linear(in_features=1536, out_features=6144, bias=True)\n",
       "                    (1): ReLU(inplace=True)\n",
       "                    (2): Dropout(p=0.0, inplace=False)\n",
       "                  )\n",
       "                  (1): Linear(in_features=6144, out_features=1536, bias=True)\n",
       "                  (2): Dropout(p=0.0, inplace=False)\n",
       "                )\n",
       "                (dropout_layer): Identity()\n",
       "              )\n",
       "            )\n",
       "            (norms): ModuleList(\n",
       "              (0-1): 2 x LayerNorm((1536,), eps=1e-05, elementwise_affine=True)\n",
       "            )\n",
       "          )\n",
       "        )\n",
       "      )\n",
       "      (postional_encoding): SinePositionalEncoding(num_feats=768, temperature=10000, normalize=True, scale=6.283185307179586, eps=1e-06)\n",
       "      (level_encoding): Embedding(3, 1536)\n",
       "      (lateral_convs): ModuleList(\n",
       "        (0): ConvModule(\n",
       "          (conv): Conv2d(1536, 1536, kernel_size=(1, 1), stride=(1, 1), bias=False)\n",
       "          (gn): GroupNorm(32, 1536, eps=1e-05, affine=True)\n",
       "        )\n",
       "      )\n",
       "      (output_convs): ModuleList(\n",
       "        (0): ConvModule(\n",
       "          (conv): Conv2d(1536, 1536, kernel_size=(3, 3), stride=(1, 1), padding=(1, 1), bias=False)\n",
       "          (gn): GroupNorm(32, 1536, eps=1e-05, affine=True)\n",
       "          (activate): ReLU(inplace=True)\n",
       "        )\n",
       "      )\n",
       "      (mask_feature): Conv2d(1536, 1536, kernel_size=(1, 1), stride=(1, 1))\n",
       "    )\n",
       "    (transformer_decoder): DetrTransformerDecoder(\n",
       "      (layers): ModuleList(\n",
       "        (0-8): 9 x DetrTransformerDecoderLayer(\n",
       "          (attentions): ModuleList(\n",
       "            (0-1): 2 x MultiheadAttention(\n",
       "              (attn): MultiheadAttention(\n",
       "                (out_proj): NonDynamicallyQuantizableLinear(in_features=1536, out_features=1536, bias=True)\n",
       "              )\n",
       "              (proj_drop): Dropout(p=0.0, inplace=False)\n",
       "              (dropout_layer): Identity()\n",
       "            )\n",
       "          )\n",
       "          (ffns): ModuleList(\n",
       "            (0): FFN(\n",
       "              (activate): ReLU(inplace=True)\n",
       "              (layers): Sequential(\n",
       "                (0): Sequential(\n",
       "                  (0): Linear(in_features=1536, out_features=6144, bias=True)\n",
       "                  (1): ReLU(inplace=True)\n",
       "                  (2): Dropout(p=0.0, inplace=False)\n",
       "                )\n",
       "                (1): Linear(in_features=6144, out_features=1536, bias=True)\n",
       "                (2): Dropout(p=0.0, inplace=False)\n",
       "              )\n",
       "              (dropout_layer): Identity()\n",
       "            )\n",
       "          )\n",
       "          (norms): ModuleList(\n",
       "            (0-2): 3 x LayerNorm((1536,), eps=1e-05, elementwise_affine=True)\n",
       "          )\n",
       "        )\n",
       "      )\n",
       "      (post_norm): LayerNorm((1536,), eps=1e-05, elementwise_affine=True)\n",
       "    )\n",
       "    (decoder_input_projs): ModuleList(\n",
       "      (0-2): 3 x Identity()\n",
       "    )\n",
       "    (decoder_positional_encoding): SinePositionalEncoding(num_feats=768, temperature=10000, normalize=True, scale=6.283185307179586, eps=1e-06)\n",
       "    (query_embed): Embedding(100, 1536)\n",
       "    (query_feat): Embedding(100, 1536)\n",
       "    (level_embed): Embedding(3, 1536)\n",
       "    (cls_embed): Linear(in_features=1536, out_features=151, bias=True)\n",
       "    (mask_embed): Sequential(\n",
       "      (0): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "      (1): ReLU(inplace=True)\n",
       "      (2): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "      (3): ReLU(inplace=True)\n",
       "      (4): Linear(in_features=1536, out_features=1536, bias=True)\n",
       "    )\n",
       "    (loss_cls): CrossEntropyLoss(avg_non_ignore=False)\n",
       "    (loss_mask): CrossEntropyLoss(avg_non_ignore=False)\n",
       "    (loss_dice): DiceLoss()\n",
       "  )\n",
       ")"
      ]
     },
     "execution_count": 8,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "import dinov2.eval.segmentation_m2f.models.segmentors\n",
    "\n",
    "CONFIG_URL = f\"{DINOV2_BASE_URL}/dinov2_vitg14/dinov2_vitg14_ade20k_m2f_config.py\"\n",
    "CHECKPOINT_URL = f\"{DINOV2_BASE_URL}/dinov2_vitg14/dinov2_vitg14_ade20k_m2f.pth\"\n",
    "\n",
    "cfg_str = load_config_from_url(CONFIG_URL)\n",
    "cfg = mmcv.Config.fromstring(cfg_str, file_format=\".py\")\n",
    "\n",
    "model = init_segmentor(cfg)\n",
    "load_checkpoint(model, CHECKPOINT_URL, map_location=\"cpu\")\n",
    "model.cuda()\n",
    "model.eval()"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "53c0309f-df2b-4912-bca5-e57d8b3875b3",
   "metadata": {},
   "source": [
    "## Semantic segmentation on sample image"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "id": "f4abb13b-0e5a-4a40-8d44-21da4286ba7d",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/private/home/plabatut/.conda/envs/dinov2-extras-conda/lib/python3.9/site-packages/torch/functional.py:504: UserWarning: torch.meshgrid: in an upcoming release, it will be required to pass the indexing argument. (Triggered internally at /opt/conda/conda-bld/pytorch_1678402374358/work/aten/src/ATen/native/TensorShape.cpp:3483.)\n",
      "  return _VF.meshgrid(tensors, **kwargs)  # type: ignore[attr-defined]\n"
     ]
    },
    {
     "data": {
      "image/png": "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\n",
      "text/plain": [
       "<PIL.Image.Image image mode=RGB size=640x480>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "array = np.array(image)[:, :, ::-1] # BGR\n",
    "segmentation_logits = inference_segmentor(model, array)[0]\n",
    "segmented_image = render_segmentation(segmentation_logits, \"ade20k\")\n",
    "display(segmented_image)"
   ]
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.9.17"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 5
}
